Vector Search
Search documents
From Documents to Insights Integrating LlamaParse with MongoDB for Scalable AI Pipelines
LlamaIndex· 2025-10-31 01:43
Discover how to build a scalable, real-time document processing pipeline that transforms PDFs, reports, and contracts into searchable, enriched data. Learn how LlamaParse powers intelligent parsing and chunking, while MongoDB enables flexible storage, indexing, and vector search. ...
Vector Search Benchmark[eting] - Philipp Krenn, Elastic
AI Engineer· 2025-06-27 10:28
Vector Database Benchmarking Challenges - The vector database market is filled with misleading benchmarks, where every database claims to be both faster and slower than its competitors [1] - Meaningful vector search benchmarks are uniquely tricky to build [1] - It is crucial to tailor benchmarks to specific use cases to get useful results [1] - Benchmarks should be tweaked and verified independently to avoid blindly trusting marketing claims [1] Recommendations for Benchmarking - Avoid trusting glossy charts and marketing materials when evaluating vector databases [1] - Build meaningful benchmarks tailored to specific use cases to get accurate performance assessments [1] - Independently verify and tweak benchmarks to ensure they reflect real-world performance [1] About the Speaker - Philipp Krenn leads Developer Relations at Elastic, the company behind Elasticsearch, Kibana, Beats, and Logstash [1]